The Journal of Arthroplasty, ISSN: 0883-5403, Vol: 36, Issue: 7, Page: S290-S294.e1

Artificial Intelligence to Identify Arthroplasty Implants From Radiographs of the Hip

Karnuta, Jaret M; Haeberle, Heather S; Luu, Bryan C; Roth, Alexander L; Molloy, Robert M; Nystrom, Lukas M; Piuzzi, Nicolas S; Schaffer, Jonathan L; Chen, Antonia F; Iorio, Richard; Krebs, Viktor E; Ramkumar, Prem N
Hip

Background

The surgical management of complications surrounding patients who have undergone hip arthroplasty necessitates accurate identification of the femoral implant manufacturer and model. Failure to do so risks delays in care, increased morbidity, and further economic burden. Because few arthroplasty experts can confidently classify implants using plain radiographs, automated image processing using deep learning for implant identification may offer an opportunity to improve the value of care rendered.

Methods

We trained, validated, and externally tested a deep-learning system to classify total hip arthroplasty and hip resurfacing arthroplasty femoral implants as one of 18 different manufacturer models from 1972 retrospectively collected anterior-posterior (AP) plain radiographs from 4 sites in one quaternary referral health system. From these radiographs, 1559 were used for training, 207 for validation, and 206 for external testing. Performance was evaluated by calculating the area under the receiver-operating characteristic curve, sensitivity, specificity, and accuracy, as compared with a reference standard of implant model from operative reports with implant serial numbers.

Results

The training and validation data sets from 1715 patients and 1766 AP radiographs included 18 different femoral components across four leading implant manufacturers and 10 fellowship-trained arthroplasty surgeons. After 1000 training epochs by the deep-learning system, the system discriminated 18 implant models with an area under the receiver-operating characteristic curve of 0.999, accuracy of 99.6%, sensitivity of 94.3%, and specificity of 99.8% in the external-testing data set of 206 AP radiographs.

Conclusions

A deep-learning system using AP plain radiographs accurately differentiated among 18 hip arthroplasty models from four industry leading manufacturers.

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